2019
DOI: 10.48550/arxiv.1909.01759
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Data Selection for Short Term load forecasting

Nestor Pereira,
Miguel Angel Hombrados Herrera,
Vanesssa Gómez-Verdejo
et al.

Abstract: Power load forecast with Machine Learning is a fairly mature application of artificial intelligence and it is indispensable in operation, control and planning. Data selection techniqies have been hardly used in this application. However, the use of such techniques could be beneficial provided the assumption that the data is identically distributed is clearly not true in load forecasting, but it is cyclostationary. In this work we present a fully automatic methodology to determine what are the most adequate dat… Show more

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References 32 publications
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